Dataset: ESA Snow Climate Change Initiative (Snow_cci): Daily global Snow Cover Fraction - snow on ground (SCFG) from MODIS (2000-2019), version 1.0#

Dataset identifier: esacci.SNOW.day.L3C.SCFG.MODIS.Terra.MODIS_TERRA.1-0.r1
Data store: cciodp

How to open this dataset in AVL JupyterLab  

cciodp_store = new_data_store('cciodp')
ds = cciodp_store.open_data('esacci.SNOW.day.L3C.SCFG.MODIS.Terra.MODIS_TERRA.1-0.r1')

Bounding box map#

Bounding box map
Map tiles and data from OpenStreetMap, under the ODbL.

Basic information#

Parameter Value
Bounding box longitude (°) -180.0 to 180.0
Bounding box latitude (°) -90.0 to 90.0
Time range 2000-02-24 to 2019-12-31
Time period 1D

Click here for full dataset metadata.

Variable list#

Click on a variable name to jump to the variable’s full metadata.

Variable Long name Units
scfg Snow Cover Fraction on Ground percent
scfg_unc Unbiased Root Mean Square Error for Snow Cover Fraction on Ground percent
spatial_ref [none] [none]

Full variable metadata#

scfg#

Field Value
_Unsigned true
standard_name surface_snow_area_fraction
long_name Snow Cover Fraction on Ground
units percent
valid_range 0, -2
actual_range 0, 100
flag_values -51, -50, -46, -41, -4, -3, -2
flag_meanings Cloud Polar_Night_or_Night Water Permanent_Snow_and_Ice Classification_failed Input_Data_Error No_Satellite_Acquisition
missing_value -1
ancillary_variables scfg_unc
grid_mapping spatial_ref
orig_data_type uint8
fill_value -1
size 4659120000000
shape 7190, 18000, 36000
chunk_sizes 1, 1385, 2770
file_chunk_sizes 1, 1385, 2770
data_type uint8
dimensions time, lat, lon
file_dimensions time, lat, lon

scfg_unc#

Field Value
_Unsigned true
standard_name surface_snow_area_fraction standard_error
long_name Unbiased Root Mean Square Error for Snow Cover Fraction on Ground
units percent
valid_range 0, -2
actual_range 0, 100
flag_values -51, -50, -46, -41, -4, -3, -2
flag_meanings Cloud Polar_Night_or_Night Water Permanent_Snow_and_Ice Classification_failed Input_Data_Error No_Satellite_Acquisition
missing_value -1
grid_mapping spatial_ref
orig_data_type uint8
fill_value -1
size 4659120000000
shape 7190, 18000, 36000
chunk_sizes 1, 1385, 2770
file_chunk_sizes 1, 1385, 2770
data_type uint8
dimensions time, lat, lon
file_dimensions time, lat, lon

spatial_ref#

Field Value
spatial_ref GEOGCS[\"WGS 84\",DATUM[\"WGS_1984\",SPHEROID[\"WGS 84\",6378137,298.257223563,AUTHORITY[\"EPSG\",\"7030\"]],AUTHORITY[\"EPSG\",\"6326\"]],PRIMEM[\"Greenwich\",0,AUTHORITY[\"EPSG\",\"8901\"]],UNIT[\"degree\",0.0174532925199433,AUTHORITY[\"EPSG\",\"9122\"]],AUTHORITY[\"EPSG\",\"4326\"]]
longitude_of_prime_meridian 0.0
semi_major_axis 6378137.0
inverse_flattening 298.257223563
grid_mapping_name latitude_longitude
GeoTransform -180 0.01 0 90 0 -0.01
orig_data_type int32
fill_value 9223372036854775807
size 1
shape 1
chunk_sizes 1
file_chunk_sizes 1
data_type int64
dimensions
file_dimensions

Full dataset metadata#

Field Value
title ESA Snow Climate Change Initiative (Snow_cci): Daily global Snow Cover Fraction - snow on ground (SCFG) from MODIS (2000-2019), version 1.0
source TERRA MODIS, Collection 6.1: calibrated radiances 5-min L1B swath data, 1 km (MOD021KM) and geolocation fields 5-min L1A swath data, 1 km (MOD03)
history 2021-01-29: ESA snow_cci processing line SCFG, version 1.0
references http://snow-cci.enveo.at/
product_version 1-0
comment The following auxiliary data sets are used for product generation: i) ESA CCI Land Cover from 2000; water bodies and permanent snow and ice areas are masked based on this dataset. Both classes were separately aggregated to the pixel spacing of the SCF product. Water areas are masked if more than 30 percent of the pixel is classified as water, permanent snow and ice areas are masked if more than 50 percent are identified as such areas in the aggregated map. ii) Forest canopy transmissivity map; this layer is based on the tree cover classes of the ESA CCI Land Cover 2000 data set and the tree cover density map from Landsat data for the year 2000 (Hansen et al., Science, 2013, DOI: 10.1126/science.1244693), each aggregated to the product grid size. This layer is used to apply a forest canopy correction and estimate the fractional snow cover on ground.
project Climate Change Initiative - European Space Agency
ecv SNOW
processing_level L3C
product_string MODIS_TERRA
data_type SCFG
sensor_id MODIS
platform_id Terra
abstract This dataset contains Daily Snow Cover Fraction (snow on ground) from MODIS, produced by the Snow project of the ESA Climate Change Initiative programme. Snow cover fraction on ground (SCFG) indicates the area of snow observed from space on land surfaces, in forested areas corrected for the transmissivity of the forest canopy. The SCFG is given in percentage (%) per pixel. The global SCFG product is available at about 1 km pixel size for all land areas, excluding Antarctica and Greenland ice sheets. The coastal zones of Greenland are included. The SCFG time series provides daily products for the period 2000 – 2019. The SCFG product is based on Moderate resolution Imaging Spectroradiometer (MODIS) data on-board the Terra satellite. The retrieval method of the snow_cci SCFG product from MODIS data has been further developed and improved based on the ESA GlobSnow approach described by Metsämäki et al. (2015) and complemented with a pre-classification module developed by ENVEO. For the SCFG product generation from MODIS, multiple reflective and emissive spectral bands are used. In a first step, clouds are masked using an adapted version of the Simple Cloud Detection Algorithm version 2.0 (SCDA2.0) (Metsämäki et al., 2015). All cloud free pixels are then used for the snow extent mapping, using spectral bands centred at about 550 nm and 1.6 µm, and an emissive band centred at about 11 µm. The snow_cci snow cover mapping algorithm is a two-step approach: first, a strict pre-classification is applied to identify all cloud free pixels which are certainly snow free. For all remaining pixels, the snow_cci SCFG retrieval method is applied. Improvements to the GlobSnow algorithm implemented for snow_cci version 1 include (i) the utilisation of background and forest reflectance maps derived from statistical analyses of MODIS time series replacing the constant values for snow free ground and snow free forest used in the GlobSnow approach, and (ii) the usage of a global forest transmissivity map developed and created within snow_cci based on forest density from Hansen et al. (2013) and forest type layers from Land Cover CCI (Defourny, 2019). The forest transmissivity map is used to account for the shading effects of the forest canopy and estimate also in forested areas the fractional snow cover on ground. Permanent snow and ice, and water areas are masked based on the Land Cover CCI data set of the year 2000. Both classes were separately aggregated to the pixel spacing of the SCFG product. Water areas are masked if more than 30 percent of the pixel is classified as water, permanent snow and ice areas are masked if more than 50 percent are identified as such areas in the aggregated map. The product uncertainty for observed land pixels is provided as unbiased root mean square error (RMSE) per pixel in the ancillary variable. The SCFG product is aimed to serve the needs for users working in the cryosphere and climate research and monitoring activities, including the detection of variability and trends, climate modelling and aspects of hydrology, meteorology, and biology. ENVEO is responsible for the SCFG product development and generation from MODIS data, SYKE supported the development. There are a few days without any MODIS acquisitions in the years 2000, 2001, 2002, 2003, 2008, 2016 and 2018. On several days in the years 2000 to 2006, and on a few days in the years 2012, 2015 and 2016, the acquired MODIS data have either only limited coverage, or some of the MODIS data were corrupted during the download process. For these days, the SCFG products are available but have data gaps.
publication_date 2021-05-10T11:03:49
uuid 3b3fd2daf3d34c1bb4a09efeaf3b8ea9
catalog_url https://catalogue.ceda.ac.uk/uuid/3b3fd2daf3d34c1bb4a09efeaf3b8ea9
cci_project SNOW